Effective Data Integration - where to begin. Bryte Systems



Similar documents
Five Technology Trends for Improved Business Intelligence Performance

Data virtualization: Delivering on-demand access to information throughout the enterprise

Scalable Enterprise Data Integration Your business agility depends on how fast you can access your complex data

Tap into Big Data at the Speed of Business

How To Handle Big Data With A Data Scientist

White. Paper. EMC Isilon: A Scalable Storage Platform for Big Data. April 2014

BUSINESSOBJECTS DATA INTEGRATOR

Informatica PowerCenter The Foundation of Enterprise Data Integration

IBM Analytics. Just the facts: Four critical concepts for planning the logical data warehouse

SQL Server 2012 Performance White Paper

Traditional BI vs. Business Data Lake A comparison

Dell Cloudera Syncsort Data Warehouse Optimization ETL Offload

IBM Software Integrating and governing big data

BUSINESSOBJECTS DATA INTEGRATOR

A Next-Generation Analytics Ecosystem for Big Data. Colin White, BI Research September 2012 Sponsored by ParAccel

Data Management Roadmap

CitusDB Architecture for Real-Time Big Data

Hadoop Data Hubs and BI. Supporting the migration from siloed reporting and BI to centralized services with Hadoop

High-Performance Business Analytics: SAS and IBM Netezza Data Warehouse Appliances

OPEN MODERN DATA ARCHITECTURE FOR FINANCIAL SERVICES RISK MANAGEMENT

Parallel Data Warehouse

Increase Agility and Reduce Costs with a Logical Data Warehouse. February 2014

Next Generation Business Performance Management Solution

Information Architecture

The Impact of PaaS on Business Transformation

End to End Solution to Accelerate Data Warehouse Optimization. Franco Flore Alliance Sales Director - APJ

Semarchy Convergence for Data Integration The Data Integration Platform for Evolutionary MDM

The Principles of the Business Data Lake

ORACLE DATA INTEGRATOR ENTERPRISE EDITION

IT Workload Automation: Control Big Data Management Costs with Cisco Tidal Enterprise Scheduler

Interactive data analytics drive insights

IBM AND NEXT GENERATION ARCHITECTURE FOR BIG DATA & ANALYTICS!

10 Biggest Causes of Data Management Overlooked by an Overload

Virtualizing Apache Hadoop. June, 2012

The IBM Cognos Platform

A TECHNICAL WHITE PAPER ATTUNITY VISIBILITY

Data Integration Checklist

Agile Business Intelligence Data Lake Architecture

Big Data Comes of Age: Shifting to a Real-time Data Platform

Why DBMSs Matter More than Ever in the Big Data Era

Virtual Data Warehouse Appliances

Understanding the Value of In-Memory in the IT Landscape

The Future of Data Management

Data Virtualization A Potential Antidote for Big Data Growing Pains

Microsoft Analytics Platform System. Solution Brief

Offload Enterprise Data Warehouse (EDW) to Big Data Lake. Ample White Paper

Please give me your feedback

SAS Enterprise Data Integration Server - A Complete Solution Designed To Meet the Full Spectrum of Enterprise Data Integration Needs

Detecting Anomalous Behavior with the Business Data Lake. Reference Architecture and Enterprise Approaches.

<Insert Picture Here> Oracle and/or Hadoop And what you need to know

Why Big Data in the Cloud?

CONVERGE APPLICATIONS, ANALYTICS, AND DATA WITH VCE AND PIVOTAL

Managing Big Data with Hadoop & Vertica. A look at integration between the Cloudera distribution for Hadoop and the Vertica Analytic Database

White Paper. Unified Data Integration Across Big Data Platforms

Unified Data Integration Across Big Data Platforms

IS IN-MEMORY COMPUTING MAKING THE MOVE TO PRIME TIME?

Getting started with a data quality program

Oracle Data Integration: CON7926 Oracle Data Integration: A Crucial Ingredient for Cloud Integration

Investor Presentation. Second Quarter 2015

Optimizing Storage for Better TCO in Oracle Environments. Part 1: Management INFOSTOR. Executive Brief

Oracle Database 12c Plug In. Switch On. Get SMART.

Big Data for the Rest of Us Technical White Paper

JOURNAL OF OBJECT TECHNOLOGY

Master Data Management Enterprise Architecture IT Strategy and Governance

Cloud computing: Innovative solutions for test environments

Business Intelligence for Everyone

Big Data and New Paradigms in Information Management. Vladimir Videnovic Institute for Information Management

Proven Testing Techniques in Large Data Warehousing Projects

Big data management with IBM General Parallel File System

Powerful Management of Financial Big Data

SAS and Oracle: Big Data and Cloud Partnering Innovation Targets the Third Platform

A HIGH-PERFORMANCE, SCALABLE BIG DATA APPLIANCE LAURA CHU-VIAL, SENIOR PRODUCT MARKETING MANAGER JOACHIM RAHMFELD, VP FIELD ALLIANCES OF SAP

Oracle Database 11g Comparison Chart

Accenture and SAP: Delivering Visual Data Discovery Solutions for Agility and Trust at Scale

Upgrading to Microsoft SQL Server 2008 R2 from Microsoft SQL Server 2008, SQL Server 2005, and SQL Server 2000

Simple. Extensible. Open.

redesigning the data landscape to deliver true business intelligence Your business technologists. Powering progress

BACKUP IS DEAD: Introducing the Data Protection Lifecycle, a new paradigm for data protection and recovery WHITE PAPER

Big Data and Big Data Modeling

Informatica Data Quality Product Family

A Big Data Storage Architecture for the Second Wave David Sunny Sundstrom Principle Product Director, Storage Oracle

Protecting Big Data Data Protection Solutions for the Business Data Lake

BUSINESS INTELLIGENCE. Keywords: business intelligence, architecture, concepts, dashboards, ETL, data mining

Are You Big Data Ready?

HYPERION MASTER DATA MANAGEMENT SOLUTIONS FOR IT

FROM DATA STORE TO DATA SERVICES - DEVELOPING SCALABLE DATA ARCHITECTURE AT SURS. Summary

More Data in Less Time

Transcription:

Effective Data Integration - where to begin Bryte Systems

making data work Bryte Systems specialises is providing innovative and cutting-edge data integration and data access solutions and products to enable a data savvy enterprise. Bryte Systems offers products for access and integration of Big Data, Change Data Capture, Data Integration, Data Replication and Metadata Management. Contact us: Website: www.bryte.com.au Call us: Telephone: +61 2 8448 8111 Fax: +61 2 8448 2010 Address: Level 20, Tower A The Zenith Centre 821 Pacific Highway Chatswood NSW 2067 Australia Email us: info@bryte.com.au

How Data Integration is evolving Data Integration technology is here to stay. However, the technology faces new challenges now, with the rise of cloud computing, the emerging use of big data and the need to use data integration tools across a range of different underlying architectures and data technologies. Data is critical to running a business, small or large, but organisations cannot realize the full business value of their data unless they can effectively integrate and move it between different systems regardless of where it originates, in the enterprise or on the Internet. And now the need for Data Integration technologies becomes even more critical, as the tools are required to handle the traditional data warehouses and unstructured sources - across the internet, from different appliances, files, Hadoop, just to name a few and integrate them seamlessly to deliver the strategic business advantage. Emerging technologies such as data tiering and compression, along with in-memory databases, are enabling the management of much larger workloads than conventional warehouses. The reasons for requiring data integration still stand as they did in the past for delivering Single source of truth Single view of customer Reduction in data acquisition costs Current and historical data for trend analysis Data consolidation for reporting and analytics Data lineage But now, old slow moving Data Warehousing solutions delivering to Business Intelligence applications can be better implemented with the new technologies. Further the typical payback for investment in the new technologies is just a few months, as the tools are more costeffective and data delivery is efficient and streamlined. Bryte Systems: Effective Data Integration where to begin Copyright 2013 All rights reserved Page 3

The movement to big data systems these days is largely driven around the commoditisation of technology, and the availability of cheap and massively parallel and scalable platforms, such as those provided by cloud computing providers. Another factor is the ability to manage data at speeds once not considered possible, given the ability of systems such as Hadoop which provide reliable data storage and high-performance parallel data processing. Sourcing unstructured data from machines or the internet is becoming necessary for gaining a competitive advantage. Data Integration now needs to scale up for: Data Flow Volume an exponential increase with certain sources Structured Data Unstructured Data Moving data effectively between the cloud and enterprise data repositories Delivering accurate data real-time or near real-time Built-in processes and techniques for data manipulations and transformations so that complexity is hidden and productivity is boosted More and more organisations are realizing that data integration done right can be a key differentiator. But, with the ever-changing integration landscape, how can IT professionals be sure they are taking the right approach? What constitutes an effective data integration technology?

Effective Data Integration An effective data integration technology has to deliver on the following objectives: Timeliness Data is a perishable commodity: the older it is, the less relevant. Businesses need tools that can provide real-time data flowing into their business intelligence applications for a current and comprehensive picture of their organisation and their customers. Accuracy and Integrity Business intelligence based on wrong data will do more harm than good. The data integration environment should drive a higher quality of audit and error mechanisms to include automatic or convenient error checking and verification. Consistency and Clarity Integration should provide a clear and unique definition of various types of data, and promote a better alignment in the organisation so that everyone is working from the single source of truth. Completeness All available information, including both historical and recent data, should be made accessible in an integrated database, with any missing records or fields identified and flagged via the integration process. Quick Turn-around The integrated data environment should be a consolidated environment that provides data that has been pre-processed, consolidated and verified for various applications to use concurrently. Productivity The data integration technology should provide developers with flexibility, ease of use and reusability. Known techniques should be provided as built-in processes so that delivery and maintenance is further simplified Bryte Systems: Effective Data Integration where to begin Copyright 2013 All rights reserved Page 5

Scalability With the emergence of big data, scalability is even more vital as big data brings with it a deluge of data. Data integration should scale and be extensible when you need it. Versatility The data integration technology should be able to deal with different underlying architectures and technologies as it would need to cope with structured and unstructured data environments. Lower Data Acquisition and Storage Cost Data integration should allow data to be collected only once, and made readily available to all users. Security Data security and especially data privacy which gets more relevant with big data is a critical part of information management, and must be managed effectively by the integration technology.

Conclusion As data volumes, variety and complexity continue to soar; traditional data integration technologies face a battle on their hands to keep up with ever-increasing and changing demands of the business world. Organisations need to consider their data integration technology carefully, as many are still stuck in the past and have not realised just how much better data integration software has become in the recent years. The slow moving data from ETL products with proprietary servers that handled data row by row and the slow processing of data are a thing of the past. New data integration technologies bring real-time data delivery, better data management techniques that remove the need for lengthy batch processing, better error handling and enable turn-key solutions that can be more responsive to business demands. Organisations also need to clearly understand the type and volume of data that they need to support, now and into the future. This due diligence should ensure that the integration tool they acquire today will continue to deliver value tomorrow and well into the future. Effective Data integration continues to be an important piece of the enterprise technology puzzle. As time moves on, it will become even more critical for success. Bryte Systems: Effective Data Integration where to begin Copyright 2013 All rights reserved Page 7